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Health Condition Monitoring of Aero-engine with Known Clustering Number Based on Ant Colony Algorithm

机译:基于蚁群算法的已知聚类数字气井发动机的健康状况监测

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An algorithm based on ant colony algorithm for health condition monitoring of aero-engine was put forward. The algorithm conversed the health status classification of aero-engme into solving the clustering-based optimization problem with constrain. Ant colony algorithm based on colony collaboration and learning could solve this clustering problem. The proposed algorithm after being optimized by BP neural network was applied to monitor health condition of aero-. engine. The emulation result shows that the algorithm has the merits of simple realization, fast convergence, strong' parallelism and robustness, high identification accuracy and high reliability, and is fit for health condition monitoring of aero-engine with low demands on fault samples and with known clustering number.
机译:提出了一种基于Ant煤气算法的航空发动机健康状况监测算法。该算法对Aero-engme的健康状态分类对接求解基于聚类的优化问题。基于殖民地协作和学习的蚁群算法可以解决这种聚类问题。采用BP神经网络优化后的所提出的算法来监测航空的健康状况。引擎。仿真结果表明,该算法具有简单的实现,快速收敛性,强烈的“并行性和鲁棒性,高识别精度和高可靠性,并且适合对故障样品的低需求的航空发动机健康状况监测,并且具有已知的空气发动机聚类号码。

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